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Online Continuous Generalized Category Discovery

About

With the advancement of deep neural networks in computer vision, artificial intelligence (AI) is widely employed in real-world applications. However, AI still faces limitations in mimicking high-level human capabilities, such as novel category discovery, for practical use. While some methods utilizing offline continual learning have been proposed for novel category discovery, they neglect the continuity of data streams in real-world settings. In this work, we introduce Online Continuous Generalized Category Discovery (OCGCD), which considers the dynamic nature of data streams where data can be created and deleted in real time. Additionally, we propose a novel method, DEAN, Discovery via Energy guidance and feature AugmentatioN, which can discover novel categories in an online manner through energy-guided discovery and facilitate discriminative learning via energy-based contrastive loss. Furthermore, DEAN effectively pseudo-labels unlabeled data through variance-based feature augmentation. Experimental results demonstrate that our proposed DEAN achieves outstanding performance in proposed OCGCD scenario.

Keon-Hee Park, Hakyung Lee, Kyungwoo Song, Gyeong-Moon Park• 2024

Related benchmarks

TaskDatasetResultRank
Streaming Class-Incremental LearningBlob
Accuracy99.3
10
Streaming Class-Incremental LearningKDD99
EN Accuracy99.6
10
Streaming Class-Incremental LearningSea
EN Accuracy99.7
10
Multi-class classificationKDD99
Avg G-mean94.3
10
Streaming Class-Incremental LearningVib
EN Accuracy99
10
Streaming Class-Incremental LearningMNIST
Accuracy96.2
10
Streaming Class-Incremental LearningForest
EN Accuracy99.4
10
Streaming Class-Incremental LearningSENSORLESS
EN Accuracy99.1
10
Multi-class classificationSea Synthetic
Avg G-mean0.87
10
Multi-class classificationVib Synthetic
Average G-mean97
10
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